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appointment is 1 year with an expected renewal for a 2nd year based on mutual agreement. Appointment Start Date: Oct 1, 2025 Group or Departmental Website: https://profiles.stanford.edu/andreas-loening (link is
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individual synovial membrane and osteochondral unit-on-chip models as well as a their combination in the joint-on-chip to test established and new disease modifying agents to validate their use in drug
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of computing and healthcare. Methodologies of interest include: Multi-modal learning Foundation models, including large language models Agentic AI Multi-agent AI systems Transfer learning Self-supervised
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integration and knowledge representation (e.g. FAIR data, semantic interoperability, ontologies, knowledge graphs); Machine learning and generative AI for health (e.g. multimodal patient modeling, predictive
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: Title of Post: Post Doctoral Researcher (Level 1) AI-Minds Project: Trustworthy AI Large Language Educational Models JOB SYNOPSIS Post Doctoral Researcher to develop agentic LLMs tailored to immersive
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therapeutics deployed to treat advanced prostate cancer including treatments that exploit androgen receptor signaling, DNA repair deficiency and immune-based agents. This position will focus on delineating
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world. We look forward to receiving your application! We are looking for a PhD student in AI and autonomous systems with a focus on Vision-Language-Action (VLA) Models to control multiple heterogenous
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cancer to the treatment with small molecule chemotherapeutic agents. For this position it is: Required: - Hold a PhD degree in biological or biomedical sciences obtained between January 2024 and December
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designing, developing and evaluating systems and models to enhance learning through AI technology. The PhD fellow will engage with developing and evaluating models and agents, as well as, multi-agent networks
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highly desirable) AI/ML for predictive modeling and inverse design of nanomaterials Autonomous laboratories for materials synthesis and characterization Generative models, reinforcement learning, and agent